AI RESEARCH

Statistical Testing on Directed Graphs by Surrogate Data Generation

arXiv CS.LG

ArXi:2606.00758v1 Announce Type: cross In recent years, graph signal processing has emerged as a powerful framework at the intersection of signal processing and graph theory, providing tools for the analysis of signals defined on nodes while accounting for their relationships represented by edges. These tools have been successfully applied to various settings, including statistical hypothesis testing. In particular, non-parametric approaches based on surrogate generation have been proposed for signals on undirected graphs. However, they are yet to be extended to directed graphs.